Department of Aerospace Engineering, University of Michigan, Ann Arbor, Michigan, USA.
Department of Naval Architecture and Marine Engineering, University of Michigan, Ann Arbor, Michigan, USA.
Indoor Air. 2022 Mar;32(3):e13015. doi: 10.1111/ina.13015.
We develop a simple model for assessing risk of airborne disease transmission that accounts for non-uniform mixing in indoor spaces and is compatible with existing epidemiological models. A database containing 174 high-resolution simulations of airflow in classrooms, lecture halls, and buses is generated and used to quantify the spatial distribution of expiratory droplet nuclei for a wide range of ventilation rates, exposure times, and room configurations. Imperfect mixing due to obstructions, buoyancy, and turbulent dispersion results in concentration fields with significant variance. The spatial non-uniformity is found to be accurately described by a shifted lognormal distribution. A well-mixed mass balance model is used to predict the mean, and the standard deviation is parameterized based on ventilation rate and room geometry. When employed in a dose-response function risk model, infection probability can be estimated considering spatial heterogeneity that contributes to both short- and long-range transmission.
我们开发了一个简单的模型来评估空气传播疾病的风险,该模型考虑了室内空间中不均匀的混合,并且与现有的流行病学模型兼容。生成了一个包含 174 个教室、讲堂和公共汽车气流高分辨率模拟的数据库,并用于量化在广泛的通风率、暴露时间和房间配置下,呼出飞沫核的空间分布。由于障碍物、浮力和湍流扩散导致的不完全混合导致浓度场具有显著的方差。发现浓度场的空间非均匀性可以通过移位对数正态分布准确描述。使用混合良好的质量平衡模型来预测平均值,并且根据通风率和房间几何形状对标准偏差进行参数化。当在剂量反应函数风险模型中使用时,可以考虑导致短距离和长距离传播的空间异质性来估计感染概率。